Enhancing the tonal and spatial characteristics of digital images using selective spatial filters

ABSTRACT

A method of enhancing the tonal and spatial characteristics of a digital image, includes receiving a source digital image including a plurality of pixels; producing a tone scale function that can be used to enhance the tonal characteristics of the source digital image; classifying the tone scale function into one of two or more categories, wherein the classification categories include expansive and compressive; and using the tone scale function, the source digital image, and a first spatial filter to produce an enhanced digital image when the tone scale function has been classified as compressive, and using the tone scale function, the source digital image, and a second spatial filter to produce an enhanced digital image when the tone scale function has been classified as expansive.

CROSS REFERENCE TO RELATED APPLICATIONS

Reference is made to commonly-assigned U.S. patent application Ser. No. 10/178,260, filed Jun. 24, 2002, entitled “Enhancing the Tonal Characteristics of Digital Images” by Edward B. Gindele, U.S. patent application Ser. No. 10/246,856 filed Sep. 19, 2002, entitled “Enhancing the Tonal Characteristics of Digital Images Using Inflection Points in a Tone Scale Function” by Edward B. Gindele, and U.S. patent application Ser. No. 10/263,110 filed Oct. 2, 2002, entitled “Enhancing the Tonal Characteristics of Digital Images Using Expansive and Compressive Tone Scale Functions” by Edward B. Gindele et al, and U.S. patent application Ser. No. 10/263,113 filed Oct. 2, 2002, entitled “Enhancing the Tonal and Color Characteristics of Digital Images Using Expansive and Compressive Tone Scale Functions” by Edward B. Gindele et al, U.S. Ser. No. 10/280,369 filed concurrently herewith, entitled “Enhancing the Tonal, Spatial and Color Characteristics of Digital Images Using Expansive and Compressive Tone Scale Functions” by Edward B. Gindele et al, the disclosures of which are incorporated herein by reference.

FIELD OF THE INVENTION

This invention relates to digital image processing and in particular to processing a digital image to enhance its spatial detail, and tone scale characteristics.

BACKGROUND OF THE INVENTION

Many digital imaging systems enhance the contrast and lightness characteristics of digital images through the application of a tone scale curve. For a generalized tone scale curve ƒ( ), the input pixel value x is transformed to an output pixel value ƒ(x). The shape of the tone scale curve determines the visual effect imparted to the processed digital image. Some tone scale curves applied to digital image are independent of the pixel values in the digital image to be processed. Such image independent tone scale curves are useful for establishing a photographic look to the processed digital images. While image independent tone scale curves can be used to enhance many digital images, digital images that are either too high or low in contrast can benefit from the application of a tone scale curve that is responsive to the distribution of pixel values in the digital image to be processed. For image dependent tone scale curves, the mathematical formula used to generate the function ƒ(x) determines the degree and nature of the image enhancement.

When a compressive tone scale function, i.e. the tone scale function designed to reduce the numerical range of pixel values, is applied directly to image pixel data, the spatial detail in the image can be diminished. In addition, if the compressive tone scale function is applied directly to a color digital image that is in a red-green-blue representation, the tone scale function can reduce the colorfulness (saturation) characteristics of the processed digital image. In general, better results can be achieved if the compressive tone scale function is applied directly to the luminance signal of a luminance-chrominance image representation. This procedure leaves the chrominance signals unchanged but can lead to processed images that have diminished spatial detail.

In the method disclosed by Gallagher and Gindele in commonly-assigned U.S. Pat. No. 6,167,165, the spatial detail of the processed image can be mostly restored. In this method, a tone scale function is applied directly to the luminance signal and the spatial frequency detail of the tone scale modified luminance signal is adjusted inversely proportional to the slope of the applied tone scale function. The resultant processed digital images have more spatial detail and appear more natural.

A spatial filter can be used to apply a tone scale function to a digital image in such a manner that the image spatial detail will be relatively unaffected. This is particularly useful for compressive tone scale functions designed to reduce the image dynamic range. Such spatial filtering methods have been disclosed in commonly-assigned U.S. Pat. Nos. 6,317,521 and 6,285,798. When applying compressive tone scale functions to the luminance signal with a spatial filter, the color characteristics of the processed digital images look more natural even though the chrominance signals are not modified.

In commonly-assigned U.S. Pat. No. 6,317,521 Gallagher and Gindele disclose spatial filtering method for applying tone scale functions to digital images. In this method, the luminance channel of a luminance-chrominance representation digital image is separated into two signal parts. A tone scale function is applied directly to one of the signal parts and the other signal part is added back to the modified signal part. Tone scale functions generated with the methods disclosed in commonly-assigned U.S. Pat. Nos. 4,731,671 and 4,745,465 have been applied with the spatial filtering method disclosed in commonly-assigned U.S. Pat. No. 6,317,521 with success. In general, more spatial detail is preserved in the enhanced digital images than if a spatial filter were not used.

Some images naturally have a low numerical range to the pixel values and can be enhanced by applying an expansive tone scale function designed to increase the numerical range of pixel values. Simple histogram stretching methods are well known in the art. Typically a histogram is calculated from the image pixel values and the minimum and maximum pixel values are obtained. A tone scale function is constructed using a linear transform equation that expands the pixel values to achieve a predetermined goal. For example, the minimum pixel value is mapped to a lower pixel value while the maximum pixel value is mapped to a higher pixel value. Applying an expansive tone scale function to image pixel data when in a red-green-blue representation has the effect of increasing image contrast, color saturation, spatial detail, and noise. In general, the increase in contrast and spatial detail is viewed as an improvement in image quality. However, the increase in noise can reduce image quality.

In commonly-assigned U.S. Pat. No. 6,285,798 Lee discloses a method for construction a compressive tone scale function and a wave-let based spatial filtering technique for applying the compressive tone scale function to image data. This spatial filtering technique helps preserve image detail while enhancing the tonal characteristics with the compressive nature of the tone scale function. That is, the tone scale functions produced by Lee's method compress, or reduce, the scene dynamic range of the image data. Lee's method does not account for the possibility that some digital images require an expansion of the dynamic range of the digital image to achieve enhancement.

The above mentioned methods are individually designed to either avoid or remedy specific problems with image spatial detail when for applying tone scale functions to digital images. However, these methods have been designed to work primarily for compressive tone scale functions.

SUMMARY OF THE INVENTION

It is object of the present invention to provide an improved way of applying a tone scale function that is either compressive or expansive.

It is another object of the present invention to improve the method for applying a tone scale function to a digital image to enhance the tonal and spatial detail characteristics of the digital image.

These objects are achieved by a method of enhancing the tonal and spatial characteristics of a digital image, comprising the steps of:

a) receiving a source digital image including a plurality of pixels;

b) producing a tone scale function that can be used to enhance the tonal characteristics of the source digital image;

c) classifying the tone scale function into one of two or more categories, wherein the classification categories include expansive and compressive; and

d) using the tone scale function, the source digital image, and a first spatial filter to produce an enhanced digital image when the tone scale function has been classified as compressive, and using the tone scale function, the source digital image, and a second spatial filter to produce an enhanced digital image when the tone scale function has been classified as expansive.

The present invention facilitates using functions that are either compressive or expansive to improve image luminance contrast wherein compressive tone scale functions are applied using a first spatial filter designed to preserve spatial detail and expansive tone scale functions are applied using a second spatial filter designed to minimize noise amplification. By using two spatial filters noise is not amplified when applying an expansive tone scale function, and texture is preserved when applying a compressive tone scale function.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 is a functional block diagram showing the component parts of a system implementation of the present invention;

FIG. 2 is a functional block diagram of the digital image processor;

FIG. 3 a is a graph of an example of a rendering function;

FIG. 3 b is a graph of another example of a rendering function;

FIG. 4 is a functional block diagram of the tone scale module;

FIG. 5 is a functional block diagram of the tone scale function applicator;

FIG. 6 a is a functional block diagram of the compressive function applicator;

FIG. 6 b is a functional block diagram of the expansive function applicator;

FIG. 6 c is a functional block diagram of the tone scale modifier shown in FIG. 6 b;

FIG. 7. is a graph illustrating a family of highlight tone scale segments and a family of shadow tone scale segments;

FIG. 8 a is a graph of an example of a compressive highlight component function and its corresponding slope function;

FIG. 8 b is a graph of an example of a compressive shadow component function and its corresponding slope function;

FIG. 8 c is a graph of an example of a tone scale function constructed from a compressive highlight and shadow tone scale segment and its corresponding slope function;

FIG. 9 is a graph illustrating a family of highlight tone scale segments and a family of shadow tone scale segments constructed;

FIG. 10 a is a graph illustrating the construction details of an expansive highlight component function;

FIG. 10 b is a graph illustrating the construction details of an expansive shadow component function;

FIG. 10 c is a graph of an example of a tone scale function constructed from an expansive highlight and shadow tone scale segment and its corresponding slope function;

FIG. 11 is a graph illustrating a family of highlight tone scale segments and a family of shadow tone scale segments;

FIG. 12 a is a graph illustrating a family of highlight tone scale segments and a family of shadow tone scale segments for both compressive and expansive type functions;

FIG. 12 b is another graph illustrating a family of highlight tone scale segments and a family of shadow tone scale segments for both compressive and expansive type functions; and

FIG. 13 is a graph illustrating an example image histogram function and its corresponding cumulative histogram function.

DETAILED DESCRIPTION OF THE INVENTION

In the following description, a preferred embodiment of the present invention will be described as a software program. Those skilled in the art will readily recognize that the equivalent of such software may also be constructed in hardware. Because image processing algorithms and systems are well known, the present description will be directed in particular to algorithms and systems forming part of, or cooperating more directly with, the method in accordance with the present invention. Other aspects of such algorithms and systems, and hardware and/or software for producing and otherwise processing the image signals involved therewith, not specifically shown or described herein, may be selected from such systems, algorithms, components and elements thereof known in the art. Given the description as set forth in the following specification, all software implementation thereof as a computer program is conventional and within the ordinary skill in such arts.

Still further, as used herein, the computer program may be stored in a computer readable storage medium, which may comprise, for example: magnetic storage media such as a magnetic disk (such as a floppy disk) or magnetic tape; optical storage media such as an optical disc, optical tape, or machine readable bar code; solid state electronic storage devices such as random access memory (RAM), or read only memory (ROM); or any other physical device or medium employed to store a computer program.

A digital image is comprised of one or more digital image channels. Each digital image channel is comprised of a two-dimensional array of pixels. Each pixel value relates to the amount of light received by the imaging capture device corresponding to the geometrical domain of the pixel. For color imaging applications, a digital image will typically consist of red, green, and blue digital image channels. Other configurations are also practiced, e.g. cyan, magenta, and yellow digital image channels. For monochrome applications, the digital image consists of one digital image channel. Motion imaging applications can be thought of as a time sequence of digital images. Those skilled in the art will recognize that the present invention can be applied to, but is not limited to, a digital image channel for any of the above mentioned applications.

Although the present invention describes a digital image channel as a two-dimensional array of pixels values arranged by rows and columns, those skilled in the art will recognize that the present invention can be applied to mosaic (non-rectilinear) arrays with equal effect.

The present invention may be implemented in computer hardware. Referring to FIG. 1, the following description relates to a digital imaging system which includes an image capture device 10, a digital image processor 20, image output devices 30 a and 30 b, and a general control computer 40. The system may include a monitor device 50 such as a computer console or paper printer. The system may also include an input control device 60 for an operator such as a keyboard and or mouse pointer. Still further, as used herein, the present invention may be implemented as a computer program and may be stored in a computer memory device 70, i.e. a computer readable storage medium, which may include, for example: magnetic storage media such as a magnetic disk (such as a floppy disk) or magnetic tape; optical storage media such as an optical disc, optical tape, or machine readable bar code; solid state electronic storage devices such as random access memory (RAM), or read only memory (ROM); or any other physical device or medium employed to store a computer program. Before describing the present invention, it facilitates understanding to note that the present invention is preferably utilized on any well known computer system, such as a personal computer.

Multiple capture devices 10 a, 10 b, and 10 c are shown illustrating that the present invention can be used for digital images derived from a variety of imaging devices. For example, FIG. 1 can represent a digital photofinishing system where the image capture device 10 a may be a film scanner device which produces digital images by scanning a conventional photographic image, e.g. color negative film or slide film transparencies. Similarly, image capture device 10 b could be a digital camera. The digital image processor 20 provides the means for processing the digital images to produce pleasing looking images on an intended output device or media. Multiple image output devices 30 a and 30 b are shown illustrating that the present invention may be used in conjunction with a variety of output devices which may include a digital photographic printer and soft copy display. It should also be noted that the present invention can be implemented within the hardware and software of a digital camera such that the digital images produced by the digital camera have been processed with the present invention prior to being exported by the digital camera.

The digital image processor 20 depicted in FIG. 1 is illustrated in more detail in FIG. 2. The cascaded image processing modules shown in FIG. 2 represents a digital image processing path. An original digital image 101 is received from one of the image input devices shown in FIG. 1 and processed to produce a rendered digital image 103 that can be realized on an image output device. A RLSE (relative log scene exposure) conversion module 310 receives the original digital image 101 and generates an RLSE digital image that is prepared for balancing and the application of a tone scale function. A scene balance module 320 receives the RLSE digital image and performs a lightness and color balance adjustment resulting in a source digital image. A tone scale module 330 receives the source digital image, generates a tone scale function from the source digital image and applies the tone scale function to the source digital image resulting in an enhanced digital image. If the RLSE conversion module 310 and the scene balance module 320 are omitted from the image processing path of modules, the tone scale module 330 receives the original digital image 101 directly as the source digital image. A rendering module 340 processes the enhanced digital image such that the pixel values of the generated rendered digital image 103 have been prepared to yield a pleasing result when used in conjunction with an output image device such as a digital printer. As part of the processing performed by the rendering module 340, a rendering function R(x) is applied to the pixel data of the enhanced digital image to achieve the input to output pixel mapping required of the output image device. The configuration of processing modules shown in FIG. 2 is used for processing digital images that are either monochrome or color in nature. That is, the original digital image 101 includes one or more digital image channels of pixels wherein each digital image channel relates to a different color or pixels such as, an original digital image 101 that includes red, green, and blue representation or a luminance-chrominance representation.

The tone scale functions produced are designed to work best with digital images that are in a relative log scene exposure representation (RLSE). That is, the pixels of the original digital image 101 have a logarithmic relationship with respect to the original scene intensities of light from which the original digital image 101 is derived. For example, the image capture device 10 a shown in FIG. 1 can represent a photographic film scanner that produces digital images that have a linear or logarithmic relationship with the amount of transmitted light projected through a photographic negative or positive film transparency sample. If the pixels values of the resultant original digital image 101 have a logarithm relationship with the received light (i.e. the pixels are in a density representation), the original digital image 101 is considered to be in a relative log scene exposure representation. If the pixels of the original digital image 101 have a linear relationship with the received light, the original digital image 101 is considered to be in a linear exposure representation since, to within a reasonable approximation, the amount of light transmitted through the photographic film sample is linearly proportional to the amount of light received from the original photographed scene. A linear exposure representation digital image can be transformed into a relative log scene exposure representation by a linear-to-logarithmic transform implemented as function or as look-up-table (LUT) with the RLSE module 310 shown in FIG. 2.

The most common representation of digital images produced with digital cameras is a rendered representation, i.e. the digital image has been processed such that it will be yield a natural appearing image on an electronic display device. For most digital images produced with digital cameras the intended output image device is a CRT monitor device sometimes referred to as a gamma domain representation. Rendered digital images can also be transformed into a relative log scene exposure representation using a LUT transform. For digital images produced with digital cameras, the transform includes an inverse of the power law function associated with the intended electronic display device followed by an inverse rendering tone scale function related to the rendering tone scale function that the digital camera used to produce the original digital image 101. Alternatively, the method disclosed by McCarthy et al. in commonly-assigned U.S. Pat. No. 6,282,311 can be used to produce an RLSE representation from a rendered digital image.

While the best results are achieved with digital images that are in a relative log scene exposure representation, the present invention can be used to enhance the appearance of digital images that are in other representations such as linear and gamma domain representations described above. In particular, the present invention can be used to process digital images that are in a visual domain such as CIELAB (one of the color spaces defined by the International Commission on Illumination abbreviated as CIE).

The scene balance module 320 receives the RLSE digital image from the RLSE conversion module 310 and performs a lightness and color balance adjustment. The resulting processed digital image is called the source digital image since it is the input digital image to the tone scale module 330. The lightness adjustment to the pixel data accounts for exposure variability in the original digital image 101. The present invention can be used with any algorithm that performs a lightness adjustment, or luminance balance, of the input pixel data. In particular, the lightness balance procedure includes calculating one or more prediction features from the RLSE digital image. These predication features are combined using a linear equation of the prediction features into a single brightness balance value that relates to an estimate of the pixel value corresponding to a theoretical 18% gray scene reflector. While there are many such prediction features that are useful, the present invention uses a spatial activity measure as the most important prediction feature. An RLSE luminance-chrominance digital image is generated from the RLSE digital image. Next, a spatial activity filter is applied to the luminance pixel data of the RLSE luminance-chrominance digital image. The spatial activity filter calculates the minimum difference of adjacent pixel values within a 3 by 3 pixel region and assigns the minimum difference to the pixel. Pixels with minimum difference values that exceed a predetermined threshold are averaged to produce the first prediction feature. The second prediction feature is calculated by dividing the luminance pixels of the RLSE luminance-chrominance digital image into four strips and calculating the average the maximum pixel value from each of the four strips. Other prediction features that have proved to be useful are the average pixel value and the 90% cumulative histogram pixel value.

After the brightness balance value of the RLSE digital image has been calculated, the color cast of the RLSE digital image is calculated that can be used to remove an overall color cast. The principle causes of color casts are variation in the color of the source illumination and secondarily the color fidelity of the image sensor that recorded the original digital image. A color balance position is calculated for the RLSE digital image which represents the chrominance coordinates of a theoretical color-neutral scene reflector. The color balance position is calculated using a two dimensional Gaussian weighting surface applied to the chrominance pixel data of the RLSE luminance-chrominance digital image. Although the chrominance pixel data can be averaged in an unweighted manner, better results have been obtained using the two dimensional Gaussian weighting surface. This is principally due to the de-emphasis of highly colorful scene objects from the calculation. A balance look-up-table is calculated for each color of the RLSE digital image using the calculated color balance position and the brightness balance value. The balance look-up-table is applied to the RLSE digital image to produce the source digital image for the tone scale module 330. As a result of the application of the balance look-up-table, pixel values in the RLSE digital image that have a value equal to the predicted balance value are transformed to a value equal to a system defined reference gray point. Similarly, pixels with corresponding chrominance values that correspond to the color balance position will be transformed to a color neutral position.

It should be noted that it is also possible to combine the operation of the lightness balance procedure described above with the construction of the tone scale function described in later detail below. The lightness balance operation is equivalent to adjusting the reference gray point used in the construction of the tone scale function. If the lightness balance operation is combined with the construction of the tone scale function, the reference gray point is image dependent since the pixels of the digital image being processed are used to calculate the reference gray point.

The rendering module 340 accepts the enhanced digital image from the tone scale module 330 and prepares the pixel data for display on an output image device. The rendering module 340 performs a color transformation, a tonal rendering transformation, and an output encoding transformation. The pixel data must be transformed such that the pixel data representing different original scene colors are appropriate for the color spectral characteristics associated with the output image device. This can be accomplished in a multiple step procedure. First the RLSE representation pixel data of the enhanced digital image is transformed into a linear representation. Next a color matrix transform is applied to the linear representation pixel data. The color matrix can be a 3 by 3 element matrix wherein the elements of the matrix are determined by analyzing a collection of imaged color patch targets and measuring the resultant color produced with the intended output image device.

The other task includes the transformation of the pixel data from the linear or relative-log-scene-exposure representation to a rendered representation with the application of a rendering function R(x). In general, the dynamic range of the enhanced digital image is much larger than can be displayed on typical output image devices such as CRT monitors or photographic paper. Therefore, if the pixel data of the enhanced digital image were received by the output image device directly, much of the pixel data would be clipped in the extreme light and dark parts of the image with a substantial loss of spatial detail. The rendering function performs a graceful roll-off of the pixel data such that the processed pixel data when displayed will result in a gradual loss of spatial detail as pixel values approach the limits of the output image device.

The present invention can be used with many different mathematical forms for the rendering function such as a rendering function produced with the method disclosed in commonly-assigned U.S. Pat. No. 5,300,381 by Buhr et al. In general, optimal results are obtained using rendering functions that have a sigmoid shape, i.e., rendering functions having a zero or near slope for extreme input pixel values and having a maximum magnitude slope that is achieved for mid-tone input values. Some rendering functions can have a relatively high slope for the darkest domain of input pixel values but many rendering functions have a zero or near zero slope characteristic for the lightest domain of pixel values. The rendering function, to an extent, mimics the photo response characteristics of photographic paper used in analog imaging applications.

Although it is possible to use a rendering function that is dependent on the digital image being processed, the preferred embodiment of the present invention uses a sigmoid shaped rendering function that is independent of the digital image. Image dependent modification to the digital image being processed is performed by the tone scale module 330 prior to the application of the rendering function. Thus, the tone scale module 330 is responsible for scene dependent changes to the image content, i.e. the image signal content (spatial and color signal modulation) and image noise content (predominantly random spatial modulation due to a noise source), while the rendering module 340 is responsible for preparing the final processed image for an image output device.

FIG. 3 a shows a graph of an example rendering function R(x) (indicated by curve 590) that is suitable for use with the present invention. Point 591 corresponds to an input pixel value equal to the reference gray point. Point 592 indicates the rendering function response for a highlight pixel value corresponding to a light region in the original digital image 101. Point 593 indicates the rendering function response for a shadow pixel value corresponding to a dark region in the original digital image 101. Point 595 indicates the rendering function response corresponding to brightest reproduced output value of the output image device. Similarly, point 596 indicates the rendering function response corresponding to darkest reproduced output value of the output image device. Point 597 indicates the point on the rendering function for which the instantaneous slope has a maximum magnitude which does not necessarily coincide with the reference gray point 591. The point of maximum magnitude slope is also the inflection point of the sigmoid function, i.e. a local maximum or minimum in the corresponding slope function of the rendering function R(x). The example rendering function shown in FIG. 3 a is appropriate for a digital imaging system that uses a 12-bit pixel value representation for processing digital images. Many output display devices accept digital images with an 8-bit pixel value representation. The example rendering function shown in FIG. 3 a maps 12-bit input pixel values ranging from 0 to 4095 to output rendering pixel values ranging from 255 to 0.

The example rendering function shown in FIG. 3 a is typical for use with a digital printer that produces digital photographic prints. The output pixel value scale shown can relate to photographic paper densities, e.g. the digital printer can be calibrated such that each pixel code value is equal to 100 times the optical density that will be produced on the print. However, the present invention can also be used with electronic display devices. A typical rendering function for use with an electronic display device is shown in FIG. 3 b as indicated by curve 598. Note that the rendering function R(x) shown in FIG. 3 b produces higher numerical output rendering pixel values for higher numerical input pixel values. For a typical computer monitor device, the output pixel values will range from 0 (representing black) to 255 (representing white). The example rendering function shown in FIG. 3 b maps 12-bit input pixel values ranging from 0 to 4095 to output rendering pixel values ranging from 0 to 255.

The last operation performed by the rendering module 340 is the encoding of the output pixel values for use with an output image device. Most output image devices are calibrated to accept pixel data with a known implied relationship. For example, some digital image printers are calibrated to accept visual lightness related pixel data while other devices are calibrated for optical density related pixel data. The encoding operation performs an intensity transformation that prepares the pixel data for the specific device.

The rendering module 340 can also perform the operation of preparing the image pixel data of the enhanced digital image for an unspecified output image device. For example, the pixel data can be transformed into CIE XYZ coordinates such as defined by the International Image Consortium's Profile Connection Space.

Referring to FIG. 2, the chain of image processing modules is designed to work well with or without the inclusion of the tone scale module 330. The scene balance module 320 accommodates exposure and illumination system variability. The rendering module 340 prepares the image data for viewing on an output image device. It will be appreciated by those skilled in the art that the digital image processor 20 as depicted in FIG. 2 without the use of the tone scale module 330 will yield acceptable photographic results. That is, the contrast, lightness, and color reproduction of the system are set for optimal photographic results for the majority of typical digital images. The inclusion of the tone scale module 330 enhances the appearance of the processed digital images such that digital images that deviate from the norm, in terms of dynamic range, will be tonally enhanced and digital images that are at the norm for the system will be unaltered by the tone scale module 330. For a typical implementation of the present invention, the dynamic range of the original digital images 101 (ratio of corresponding original scene intensities based on the extremes of the image) is approximately 64 to 1. The enhanced digital images corresponding to processed original digital images 101 that have approximately a 64 to 1 dynamic range will be little affected by the tone scale module 330. Conversely, the enhanced digital images corresponding to processed original digital images 101 that have a dynamic range greater than 64 to 1 and less than 64 to 1 can be significantly enhanced by the tone scale module 330, i.e. rendered with more detail and more color saturation. In particular, low contrast original digital image will, in general, experience a contrast gain, while high contrast original digital images will, in general, experience a reduction in contrast resulting in more spatial detail and more saturated color.

The tone scale module 330 depicted in FIG. 2 is illustrated in more detail in FIG. 4. A source digital image 102 is received by an analysis image generator 250 which produces a lower spatial resolution digital image from source digital image 102 called an analysis digital image 201. A tone scale function generator 230 receives the analysis digital image 201, analyzes the image content of the analysis digital image 201, and produces a tone scale function 203. The tone scale function 203 is a single valued function that is defined for the range of pixel values in the source digital image 102. A tone scale function applicator 240 applies the tone scale function 203 to the source digital image 102 to generate an enhanced digital image 104. The shape of the tone scale function 203 determines the contrast and lightness changes that will be imparted to the enhanced digital image 104.

The tone scale function applicator 240 shown in FIG. 4 is shown in more detail in FIG. 5. A tone scale function classifier 241 receives and analyzes the tone scale function 203. The tone scale function 203 is classified into one of two or more categories based on the effect the tone scale function 203 will have on the numerical range of pixel values of a processed digital image. In a preferred embodiment, the tone scale function 203 is classified as a compressive function or an expansive function. The tone scale function 203 is classified as a compressive function if the range of output numerical pixel values is less than the range of input numerical pixel values. Conversely, the tone scale function 203 is classified as a expansive function if the range of output numerical pixel values is greater than the range of input numerical pixel values. The tone scale function classifier 241 also receives an input digital image 401. If the tone scale function 203 is classified as a compressive function, the input digital image 401 and the tone scale function 203 are directed to a compressive function applicator 242. Similarly, if the tone scale function 203 is classified as a expansive function, the input digital image 401 and the tone scale function 203 are directed to an expansive function applicator 244. Therefore, either the compressive function applicator 242 or the expansive function applicator 244 is used to process the input digital image 401 to produce the output digital image 409 which is the enhanced digital image 104 shown in FIG. 4. In particular, the compressive function applicator 242 uses the tone scale function 203, the input digital image 401, and a spatial filter to generate an output digital image 409 when the tone scale function 203 has been classified as compressive, and the expansive function applicator 244 uses the tone scale function 203 and the input digital image 401 with a different spatial filter to generate the output digital image 409 when the tone scale function 203 has been classified as expansive.

Compressive and expansive tone scale functions, when applied to digital images, produce different enhancement effects. Compressive tone scale functions have the effect of reducing the numerical range of pixel values. If a compressive tone scale function is applied to a digital image directly, some of the image signal content can also be reduced in magnitude. For example, the magnitude of a modulated signal will be reduced. In general, this is an unwanted effect. As will be described in more detail below, a first spatial filter, designed to remove image signal content (i.e. signal modulation and spatial detail) is used when applying compressive tone scale functions to digital images. The first spatial filter is employed to separate the digital image into two signals. One signal contains mostly low spatial frequency information and the other signal contains mostly high spatial frequency information. The compressive tone scale function is applied to the signal that contains mostly low spatial frequency information and the other signal that contains mostly high spatial frequency information is added back to the tone scale adjusted signal. As a result, the image signal content of the input digital image 401 is preserved in the final processed digital image and the final process digital image has acquired the contrast enhancement imparted by the tone scale function.

Expansive tone scale functions have the effect of increasing the numerical range of pixel values. If an expansive tone scale function is applied to a digital image directly, the image signal content will be amplified which is generally viewed as a good result. In fact, expansive tone scale functions are generally applied to a digital image in order to increase both the numerical range (contrast) of the image, as well at the magnitude of the image signal content. For example, the magnitude of a modulated signal will be increased. However, the image noise content of the digital image is also amplified in the process, which results in a quality degradation for the processed digital image. This is particularly acute for spatially flat regions of digital images where the noise is most noticeable. If the first spatial filter were used to apply an expansive tone scale function, the magnitude of the image noise content would not be amplified but neither would the image signal content. Therefore, a different spatial filter is used to apply an expansive tone scale function. As will be described in more detail below, a second spatial filter, designed to remove image noise content and not remove image signal content is used when applying expansive tone scale functions to digital images. The second spatial filter is employed to separate the digital image into two signals. One signal contains mostly image signal content including low spatial frequency information and the other signal contains mostly image noise content. The expansive tone scale function is applied to the signal that contains mostly image signal content including low spatial frequency information and the other signal that contains mostly image noise content is then added back to the tone scale adjusted signal. As a result, the final processed digital image contains amplified image signal content and has acquired the contrast enhancement imparted by the tone scale function while the image noise content has not amplified in the process.

While the present invention can be used with any method of generating a tone scale function, the preferred embodiment uses tone scale functions that are constructed from two tone scale segments. However, regardless of the tone scale function construction method, the tone scale function can be classified as compressive or expansive. The present invention can be used with any tone scale function classification method. For example, the average slope of the tone scale function 203 can be calculated and compared with a pre-determined threshold value. If the average slope is greater than the pre-determined threshold the tone scale function 203 is classified as an expansive function. Otherwise the tone scale function 203 is classified as a compressive function.

The present invention uses two tone scale function classification categories to select a specialized spatial filter to be used to apply the tone scale function 203 to a digital image. However, it should be noted that the present invention is not limited to two classification categories and two spatial filters. For example, the expansive category can be further categorized into two sub-categories expansive and non-noisy-expansive base on an analysis of the noise magnitude of the digital image to be processed. If the expected noise magnitude is high (relative to a predetermined selection threshold value) a noise reduction filter can be selected as the spatial filter used to apply the tone scale function 203. Conversely, if the expected noise magnitude is low, no spatial filter is needed to apply the tone scale function 203. For example, the method disclosed in commonly-assigned U.S. Pat. No. 5,923,775 can be used to estimate the expected noise magnitude in the digital image to be processed. A table of noise magnitude estimation values is calculated as function of pixel value. Next a weighted noise value is calculated by weighting the noise magnitude estimation values from the table with the frequency of occurrence histogram of pixels values sampled from the analysis digital image 201. Next the digital images in a database of representative digital images are processed with the noise estimation procedure to calculate a weighted noise value for each digital image. The same digital images in the database are also processed with a tone scale function with and without the second spatial filter. The processed digital images are then viewed and compared with corresponding weighted noise values to determine the optimal selection threshold. Tone scale functions corresponding to digital images that have a calculated weighted noise value that is less than the selection threshold are classified as non-noisy-expansive functions. Tone scale functions corresponding to digital images that have a calculated weighted noise value that is greater than or equal to the selection threshold are classified as expansive functions. For this embodiment, the classification of the tone scale function, i.e. the assigned category, is based in part on the estimated noise magnitude for the digital image to be processed.

The preferred embodiment of the present invention uses a histogram based method for determining the tone scale function classification. The input digital image 401 is analyzed by calculating a histogram function of the luminance pixel information, i.e. a frequency of occurrence function. The cumulative 1.0 and 99.0 percentile luminance pixel values are calculated from the histogram function and denoted by P₁ and P₉₉ respectively. The value of the corresponding output pixel values produced with the tone scale function 203 are recorded as T₁ and T₉₉ respectively. The tone scale function 203 is classified as a compressive function if the difference between T₉₉ and T₁ is less than or equal to the difference between P₉₉ and P₁. Otherwise the tone scale function 203 is classified as an expansive function. Other classification rules can also be used to classify the tone scale function 203. For example, the tone scale function 203 can be classified as expansive only if the ratio of the difference between the T₉₉ and T₁ relative to the difference between the difference between P₉₉ and P₁ exceeds a predetermined threshold value.

The compressive function applicator 242 shown in FIG. 5 is shown in more detail in FIG. 6 a. A LCC conversion module 210 receives the input digital image 401 in the form of a red-green-blue image representation and generates a luminance digital image 107 containing one digital image channel and a chrominance digital image 109 containing two digital image channels. A pedestal generation module 410 receives the luminance digital image 107 and produces a pedestal digital image 403. The pedestal generation module 410 employs a spatial filter, applied to the luminance digital image 107, that removes image signal content relating to image texture content from the luminance digital image 107 but leaves edge information. In the context of the present invention, image texture content refers to image content including fine spatial detail and spatial shading structure. As a natural consequence of the filter, noise is also removed. Thus the pedestal digital image 403 is a highly smoothed version of the luminance digital image 107 with much of the edge content of the luminance digital image 107. The pedestal digital image 403 is subtracted from the luminance digital image 107 by a difference module 420 resulting in a texture digital image 402. It will be appreciated that all of the information of the luminance digital image 107 is contained in either the pedestal digital image 403 or the texture digital image 402. A tone scale modifier applicator 430 applies the tone scale function 203 directly to the pixels of the pedestal digital image 403 resulting in a tone adjusted digital image 407. Therefore, the tonal characteristics of the pedestal digital image 403 are enhanced by the application of the tone scale function 203 without affecting the image texture content of the luminance digital image 107. An addition module 440 combines the tone adjusted digital image 407 with the texture digital image 402 to produce an enhanced luminance digital image 113. Therefore, the enhanced luminance digital image 113 is a tone scale enhanced version of the luminance digital image 107 that has the image texture content of the luminance digital image 107. An RGB conversion module 220 receives the enhanced luminance digital image 113 and the chrominance digital image 109 and produces the output digital image 409.

Applying a tone scale function by using a spatial filter is particularly advantageous when the tone scale function is compressive. When compressive tone scale functions are applied directly to an input digital image, the tonal characteristics will be enhanced but the image texture content can be diminished in magnitude. Using a spatial filter to apply the tone scale function can achieve the desired tone scale enhancement while maintaining the image texture content. A variety of spatial filters can be used to achieve an improved result. The present invention uses the spatial filter disclosed in commonly-assigned U.S. Pat. No. 6,317,521 by Gallagher and Gindele which employs the use of a control, or masking, signal to preserve the edges in the pedestal digital image 403. In this method, the spatial filter produces a first signal containing predominantly low-pass spatial frequency information and second signal containing predominantly high-pass spatial frequency information from the luminance digital image channel such that when the first and second signals are added together the resultant signal would be equal to the luminance digital image channel. This separation of signals is accomplished with a non-linear operation that modifies the spatial filtering based on detecting edges within a low-pass frequency version of the luminance information. The tone scale function 203 is then applied to the first signal to produce a modified first signal. The modified first signal is then combined with the second signal to produce a modified luminance digital image channel.

The present invention can also be used with a similar method disclosed by Lee in commonly-assigned U.S. Pat. No. 6,285,798. Another spatial filter that can be employed is a simple low-pass filter, such as a two dimensional Gaussian filter. However, if a low-pass filter is used, the dimension of the Gaussian standard deviation parameter should be very large, e.g. one quarter of the dimension of the digital image being processed.

It should also be noted that the input digital image 401 to the compressive function applicator 242 can be processed with the spatial filtering technique directly in a red-green-blue image representation. For this embodiment, the red, green, and blue digital image channels of the input digital image 401 are spatially filtered individually using the spatial filter described above to produce a first and second signal for each digital image channel. The first and second signal for each digital image channel when added together result in a signal equal to the unfiltered digital image channel. The tone scale function 203 is then applied to the first signal corresponding to each digital image channel to produce a modified first signal. The modified first signal from each digital image channel is then combined with the corresponding second signal to produce a modified digital image channel of each color wherein the modified digital image channels constitute the enhanced digital image 104.

An expansive function applicator 244 shown in FIG. 5 is shown in more detail in FIG. 6 b. A noise reduction module 450 receives an input digital image 401 and applies a noise reduction filter that removes from the pixels of the input digital image to produce a noise reduced digital image 413. This operation is performed on each digital image channel of the input digital image 401. Depending on the requirements of the noise reduction filter employed, the noise reduction module 450 can also receive a noise table 207, i.e. a table of noise parameters that indicates the expected magnitude of noise in the input digital image 401. The noise reduced digital image 413 represents a noise cleaned digital image version of the input digital image 401. The difference module 420 subtracts the noise reduced digital image 413 from the input digital image 401 which results in a noise residual digital image 412. Thus all of the information in the input digital image 401 is represented in either the noise reduced digital image 413 (mostly image signal content) or the noise reduced digital image 412 (mostly stochastic noise). The tone scale modifier 430 applies the tone scale function 203 to the noise reduced digital image 413 resulting in the tone scale adjusted digital image 407. The information in the noise reduced digital image 413 is generally amplified since the tone scale function 203 has been classified an expansive function. Thus it will be appreciated that the image noise content contained in the input digital image will not be amplified since the image noise content has been removed by the noise reduction module 450 and is unaffected by the application of the tone scale function 203.

It is possible to have the tone scale adjusted digital image 407 be the output digital image 409 of the expansive function applicator 244 since the tone scale properties of the processed image have been significantly improved. Depending on the sophistication and performance of the noise reduction module 450, some of the image signal content of the input digital image 401 can be distributed in the noise reduced digital image 412. Therefore, in the preferred embodiment, the noise reduced digital image 412 is added back to the tone scale adjusted digital image 407 by the addition module 440 to recover any image signal content. It is also possible to add back only a fraction of the noise reduced digital image 412.

It will be appreciated that the spatial filter employed by the noise reduction module 450 within the expansive function applicator 244 performs a very different function than the spatial filter employed by the compressive function applicator 242. The spatial filter employed by the expansive function applicator 244 is designed to remove noise such that when the tone scale function 203 is applied to a digital image the image signal content will be amplified but the image noise content will not be amplified. The spatial filter employed by the compressive function applicator 242 is designed to remove image signal content such that when the tone scale function 203 is applied to a digital image the image signal content will not be reduced in magnitude. In general, image signal content is larger in magnitude than the image noise content.

In an alternative embodiment of the tone scale modifier 430 shown in FIG. 6 b, is shown in more detail in FIG. 6 c. The LCC conversion module 210 receives the noise reduced digital image 413 in the form of a red-green-blue image representation and generates the luminance digital image 107 containing one digital image channel and the chrominance digital image 109 containing two chrominance digital image channels. A direct function applicator 433 applies the tore scale function 203 directly to the pixels of the luminance digital image 107 resulting in the enhanced luminance digital image 113. Therefore, the tonal characteristics of the luminance digital image 107 are enhanced by the application of the tone scale function 203 while also amplifying the image signal content, also referred to as the image texture content, of the luminance digital image 107. A chrominance modifier 432 receives the tone scale function 203, the luminance digital image 107, and the chrominance digital image 109 and amplifies the chrominance pixel values in accordance with the tone scale function 203 using the method disclosed in commonly-assigned U.S. Pat. No. 6,438,264 to produce the enhanced chrominance digital image 114. The enhanced luminance digital image 113 and the enhanced chrominance digital image 114 are combined by the RGB conversion module 220 to produce the output digital image 409. Those skilled in the art will recognize that the present invention can be practiced with digital images in other representations, such as but not limited to, a CMYK (cyan, magenta, yellow, black) image representation. A luminance-chrominance representation of a CMYK digital image could have one luminance digital image channel and three chrominance digital image channels. This alternative embodiment of applying an expansive tone scale function to the luminance digital image channel derived from the noise reduced digital image is more complicated than the preferred embodiment. However, this alternative embodiment provides a method of separately amplifying the chrominance and luminance information.

The noise reduction module 450 can employ a variety of spatial filters designed to remove noise from a digital image since the image signal content removed from the digital image being processed with the spatial filter is added back at a later processing step. For example, a simple low-pass spatial filter can be used such as a two dimensional Gaussian low-pass spatial filter. An area median filter can also be used as the spatial filter within the noise reduction module 450 to effectively remove noise.

The preferred embodiment of the present invention uses a variation of a Sigma filter as the spatial filter employed by the noise reduction module 450 shown in FIG. 6. Jong-Sen Lee described the Sigma filter in the journal article Digital Image Smoothing and the Sigma Filter, Computer Vision, Graphics, and Image Processing Vol 24, p. 255–269, 1983. The values of pixels contained in a local neighborhood of n by n pixels, where n denotes the length of pixels in either the row or column direction, are compared with the value of the center pixel, or pixel of interest. Each pixel in the local neighborhood of pixels is given a weighting factor of one or zero based on the absolute difference between the value of the pixel of interest and the local pixel value, i.e. a difference pixel value. If the absolute value of the pixel value difference is less or equal to a threshold value ε, the weighting factor if set to one. Otherwise, the weighting factor is set to zero. The numerical constant ε is typically set to two times the expected noise standard deviation. Mathematically the expression for the calculation of the noise reduced pixel value is given by expression (1) q _(mn)=Σ_(ij) a _(ij) p _(ij)/Σ_(ij) a _(ij) and a _(ij)=1 if |p _(ij) −p _(mn)|<=ε a _(ij)=0 if |p _(ij) −p _(mn)|>ε  (1) where p_(ij) represents the ij^(th) pixel contained in the local neighborhood of pixels, p_(mn) represents the value of the pixel of interest located at row m and column n, a_(ij) represents a weighting factor, and q_(mn) represents the noise reduced pixel value. Typically, a local neighborhood of pixels centered about the center pixel is used with the indices i and j varied to sample the local pixel values for Sigma filter applications. Jong-Sen Lee described using a rectangular arrangement of pixels for the local neighborhood of pixels. Other spatial configurations also work well such as a radial pattern of pixels within an n by n the local neighborhood of pixels.

A signal dependent noise feature can also be incorporated through a modification of the expression for the threshold ε given by equation (2) ε=Sƒacσ_(n)(p _(mn))  (2) where σ_(n) represents the expected noise standard deviation of the pixels in the local neighborhood of pixels as evaluated for the center pixel value p_(mn). It should be noted that it is not a requirement that the threshold ε be evaluated at the pixel of interest. However, it is important that the threshold ε be a function of the values of pixels of the local neighborhood. The parameter Sƒac is a scale factor, or control parameter, that can be used to vary the degree of noise reduction. The optimal value for the Sƒac parameter has been found to be 3.0 through experimentation, however, values ranging from 2.0 to 5.0 have also been found to produce acceptable results. The noise reduced pixel value q_(mn) is calculated as the division of the two sums. The process is completed for all of the pixels contained in the digital image.

Other methods of removing noise from a digital image can also be used as the spatial filter within the noise reduction module 450. For example, in commonly-assigned U.S. patent application Ser. No. 09/742,957 filed Dec. 20, 2000, entitled “A Multiresolution Based Method for Removing Noise From Digital Images” by Edward B. Gindele and Ser. No. 10/145,937 filed May 15, 2002, entitled “A Method of Enhancing the Tone Scale of a Digital Image to Extend the Linear Response Range Without Amplifying Noise” by Edward B. Gindele et al, methods of removing noise from a digital image are disclosed that make use of a multiresolution representation of the digital image. In these two disclosures, the digital image begin processed is transformed into a multiresolution representation that includes multiple spatial resolution versions of the digital image being processed. A Sigma filter is applied to the multiple spatial resolution version components of the multiresolution representation and the processed multiresolution representation is then transformed back into a full resolution digital image.

The LCC module 210 shown in FIG. 6 a and FIG. 6 b employs a 3 by 3 element matrix transformation to convert the red, green, and blue pixel values of the source digital image 102 into luminance and chrominance pixel values. Let the variables R_(ij), G_(ij), and B_(ij) refer to the pixel values corresponding to the red, green, and blue digital image channels located at the i^(th) row and j^(th) column. Let the variables L_(ij), GM_(ij), and ILL_(ij) refer to the transformed luminance, first chrominance, and second chrominance pixel values respectively of an LCC representation digital image. The 3 by 3 elements of the matrix transformation are described by (3). L _(ij)=0.333R _(ij)+0.333G _(ij)+0.333B _(ij) GM _(ij)=−0.25R _(ij)+0.50G _(ij)−0.25B _(ij) ILL _(ij)=−0.50R _(ij)+0.50B _(ij)  (3)

The RGB conversion module 220 shown in FIG. 6 a and FIG. 6 b employs a 3 by 3 element matrix transformation to convert the luminance and chrominance pixel values into red, green, and blue pixel values by performing the inverse matrix operation to the LCC conversion module 210. The matrix elements of the RGB conversion module are given by (3) and represents the inverse matrix of the matrix given by (4). R _(ij) =L _(ij)−0.666GM _(ij) −ILL _(ij) G _(ij) =L _(ij)+1.333GM _(ij) B _(ij) =L _(ij)−0.666GM _(ij) +ILL _(ij)  (4)

The tone scale function generator 230 shown in FIG. 4 is described in more detail hereinbelow. The tone scale function generator 230 can be used in either an automatic mode, wherein the tone scale function 203 is calculated using the pixels of the analysis digital image 201, or in a manual mode, wherein the tone scale function 203 is calculated using user input selections 231 provided via a graphical user interface. In manual mode, the generation of the tone scale function 203 is manually controlled since the user has direct influence over one or more parameters controlling the shape of the tone scale function 203.

The tone scale function 203, is a single valued function, i.e. one output pixel value for each input pixel value, defined for the range of pixels values in the source digital image 102. The shape of the tone scale function 203 is important since the shape determines the effect on the processed digital images. The tone scale function 203 is constructed from two function segments wherein the two function segments share just one input pixel value in common. A reference gray point pixel value corresponding to an 18% scene reflector is defined as the input pixel value in common that divides the function domain into the two tone scale segments. The function segment relating to the brighter image regions, i.e. image regions corresponding to bright regions of the original photographed scene, is called the highlight tone scale segment. The function segment relating to the darker image regions, i.e. image regions corresponding to dim regions of the original photographed scene, is called the shadow tone scale segment. It should be noted that the tone scale function 203 is a continuous function insofar as the implementation in computer software and/or hardware will allow. It should also be noted that the tone scale function 203 can have a continuous first derivative.

An important aspect of the construction of the tone scale function 203 is the use of a different mathematical functions for two different tone scale segments. Using a different mathematical function for each tone scale segment allows the tone scale function 203 to be independently controllable in each of the tone scale segments allowing for a greater degree of customization for the digital image to be processed.

The pixel polarity of a digital image used in a digital imaging system is an arbitrary decision made by the system architect. For example, positive pixel polarity digital images have pixels wherein higher numerical values relate to more light having been received. Conversely, negative pixel polarity digital images have pixels wherein higher numerical values relate to less light having been received. The present invention can be used with digital images of either pixel polarity. However, in the interest of clarity, the following description will assume a positive pixel polarity convention. Those skilled in the art will recognize that references made to the increasing or decreasing function slope values are with respect to positive pixel polarity digital images. The description of function slope characteristics must be reversed for systems using negative pixel polarity digital images. This is an important aspect of interpretation since mathematically an increasing or decreasing function is defined with respect to numerically increasing abscissa values. For example, in the description of the construction of the highlight and shadow component functions given hereinbelow, some shadow component functions are described as having a monotonically increasing slope property while some highlight component functions are described as having a monotonically decreasing slope property. This description is with regard to a positive pixel polarity convention. For a negative pixel polarity convention, the equivalent shadow component functions would be described as having a monotonically decreasing slope property while the equivalent highlight component functions would be described as having a monotonically increasing slope property.

The highlight tone scale segment is constructed from one or more component functions some of which satisfy the following constraints: 1) the component function can have a monotonically decreasing slope function for all input pixel values equal to or greater than the reference gray point, and 2) the component function can have a monotonically increasing function value for all input pixel values equal to or greater than the reference gray point and less than or equal to a maximum input pixel value expressed in the digital image. At the reference gray point, the two tone scale function segments can have the same value. A function is monotonic over a given domain if the function does not have a reversal of its first derivative function (for digital implementations the slope function is taken as a reasonable approximation of the first derivative function). It should also be noted that the function characteristics for input pixel values greater than what is expressed in a particular image is an academic issue since no pixels will be affected. Both of the above mentioned constraints are important and require some explanation.

The highlight tone scale segment relates to the bright pixels, i.e. pixels relating to more light having been received. In general, for high dynamic range digital images the corresponding rendered digital images produced without the present invention have little or no spatial detail in the very brightest image regions. This is a consequence of the overall high system contrast required to pleasingly render digital images of average dynamic range. Therefore, for high dynamic range digital images some of the image content contained in the bright pixels cannot be rendered such that spatial detail modulation is preserved in the rendered digital image 103. Improved spatial detail modulation can be achieved if the tone scale function 203 maps high input pixel values to lower output pixel values. This results in processed digital images with darker highlight content in the resultant rendered digital image 103. There are many functions that can perform such an input to output mapping operation. However, monotonically increasing functions have been experimentally determined to be more robust, i.e. produce fewer image artifacts, than functions that are not monotonic.

While many monotonic functions can achieve the operation of mapping high input pixel values to lower output pixel values, all functions impose some form of compromise in contrast with regard to image regions corresponding to different average pixel values. In particular, the instantaneous slope value (first derivative) of the component functions used to construct the highlight tone scale segment can significantly affect the perception of contrast and spatial detail modulation in the resultant rendered digital image 103. Therefore, the highlight tone scale segment constructed using component functions having a monotonically decreasing instantaneous slope value can improve the rendering of spatial detail modulation for bright image regions by mapping highlight pixels to lower output pixel values. Image regions corresponding to higher instantaneous slope values within the domain of the highlight tone scale segment tend to preserve more image detail modulation. Thus the monotonically decreasing instantaneous slope condition advantages image content corresponding to pixel values that are numerically closer in value to the reference gray point. In general, important image content, such as the main subject region, tends to be numerically closer to the reference gray point while background image content tends to be exhibited more uniformly with regard to pixel values.

Similarly, the shadow tone scale segment is constructed from one or more component functions some of which satisfy the following constraints: 1) the component function can have a monotonically increasing slope function for all input pixel values equal to or less than the reference gray point, and 2) the component function can have a monotonically increasing function value for all input pixel values equal to or less than the reference gray point and greater than or equal to a minimum input pixel value expressed in the digital image. Similarly, the monotonicity property of the component functions used to construct the shadow tone scale segment relates to more robust image quality results. The monotonically increasing slope function property of the component functions used to construct the shadow tone scale segment is similarly important since this condition also advantages image content corresponding to pixel values that are numerically closer in value to the reference gray point. For high dynamic range images, the monotonically increasing slope function property of the component functions used to construct the shadow tone scale segment achieves a low input pixel value to higher output pixel value mapping operation. This results in processed digital images with lighter shadow content in the resultant rendered digital image 103.

A natural consequence of the above mentioned slope function constraints produces tone scale functions that have high slope function values at the reference gray point. Therefore the choice of the reference gray point value is important since it determines which regions in images will experience high slope function values. A reference gray point value corresponding to an 18% gray scene reflector is chosen since it represents approximately the midpoint of perceptual lightness. Other choices for the value of the reference gray point can also produce excellent results. Reasonable values for the reference gray point range from a 10% scene reflector value to a 25% scene reflector value.

In a first embodiment of the tone scale function generator 230 shown in FIG. 4, either the highlight or the shadow tone scale segment is constructed using a single component function based on exponential functions. The component function used for the highlight tone scale segment is given by the formula (5a) ƒ_(h1)(x)=β_(h1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(h1) )+x _(ρ)  (5a) where x_(ρ)represents the reference gray point, and β_(h1) and α_(h1) are numerical constants that determine the shape and slope of the component function ƒ_(h1)(x). The component function used for the shadow tone scale segment is given by the formula (5b) ƒ_(s1)(x)=β_(s1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(s1) )+x _(ρ)  (5b) where β_(s1) and α_(s1) are numerical constants that similarly determine the shape and slope of the component function ƒ_(s1)(x). If a slope constraint of 1.0 is imposed at the reference gray point, the constants β_(h1) and β_(s1) are equal to α_(h1) and α_(s1) respectively. For this condition, the equations for the functions ƒ_(h1)(x) and ƒ_(s1)(x) are given as (6) and (7) ƒ_(h1)(x)=α_(h1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(h1) )+x _(ρ)  (6) ƒ_(s1)(x)=α_(s1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(s1) )+x _(ρ)  (7) and the expression for the tone scale function 203 T(x) is given by (8). T(x)=ƒ_(h1)(x) for x>=x _(ρ) T(x)=ƒ_(s1)(x) for x<x _(ρ)  (8)

The highlight component function is constrained to pass through a specified coordinate point defined by an abscissa value x_(ho) that results in an ordinate value x_(w) as given by (9). x _(w)=α_(h1)(1−e ^(−(x) ^(ho) ^(−x) ^(ρ) ^()/α) ^(h1) )+x _(ρ)  (9) This constraint achieves a highlight white point mapping objective. For the highlight component function, the white point value x_(w) is predetermined based on the pixel value that is preferably mapped by the rendering function R(x) to correspond to a predetermined photographic paper density of approximately 0.2. With the variables x_(w) and x_(ρ) defined, the value of the variable α_(h1) can be solved for a given value of x_(ho) using expression (9) by an iterative numerical solution. Similarly, the shadow component function is constrained to pass through a specified coordinate point defined by an abscissa value x_(so) that results in an ordinate value x_(b) as given by (10). x _(b)=α_(s1)(1−e ^(−(x) ^(so) ^(−x) ^(ρ) ^()/α) ^(s1) )+x _(ρ)  (10) This constraint achieves a shadow black point mapping objective. For the shadow tone scale function, the black point value x_(w) is predetermined based on the pixel value that is preferably mapped by the rendering function R(x) to correspond to a predetermined photographic paper density of approximately 2.0. With the variables x_(b) and x_(ρ)defined, the value of the variable α_(s1) can be solved for a given value of x_(so) using expression (10) by the iterative numerical solution. The iterative numerical solution for expressions (9) and (10) includes a process of first estimating an initial value of α_(s1), calculating each side of the equation, calculating an error term as the difference, inspecting the error, making an adjustment to the estimate of α_(s1), and iterating the procedure until the error term is of an acceptably low magnitude. The iterative solution results are computed for all possible values of α_(s1) and stored in a LUT. The same calculations and procedure are used to determine the value of α_(h1).

The variables x_(ho) and x_(so) are control variables in the expressions (9) and (10) that, once selected, determine the function shape and slope characteristics for expressions (6) and (7). FIG. 7 shows a graph depicting a family of curves that represent highlight tone scale segments generated with different values of x_(ho) and a family of curves that represent shadow tone scale segments generated with different values of x_(so). Point 500 represents the reference gray point x_(ρ). Curve 501 represents a highlight tone scale segment constructed from one highlight component function. Curve 502 represents a shadow tone scale segment constructed from one shadow component function. Line 503 represent the one-to-one input-to-output line. For each of the highlight tone scale segments shown in FIG. 7, the highlight component function graphed has a monotonically decreasing instantaneous slope value. Similarly, for each of the shadow tone scale segments shown in FIG. 7, the component function graphed has a monotonically increasing instantaneous slope value. The variables x_(ho) and x_(so) can be selected independently. Thus the shape of the two tone scale segments can be controlled independent from one another.

The expressions (6) and (7) were derived with the constraint that the slope function (corresponding to the component function), when evaluated at the reference gray point, must be equal to 1.0. In another embodiment, exponential functions are used in similar fashion with a slope constraint imposed. The slope of the highlight component function must be equal to a selected value φ_(h) and the shadow component function must be equal to a selected value φ_(s). For this embodiment, the imposed slope constraint results in a relationship between the variables β_(h1) and α_(h1) in expression (4) and β_(s1) and α_(s1) in expression (5) given by expressions (11) and (12) respectively. β_(h1)=φ_(h)α_(h1)  (11) β_(s1)=φ_(s)α_(s1)  (12) The expressions for the highlight component function and the shadow component function are given by expressions (13) and (14) respectively. ƒ_(h1)(x)=φ_(h)α_(h1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(h1) )+x _(ρ)  (13) ƒ_(s1)(x)=φ_(s)α_(s1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(s1) )+x _(ρ)  (14)

The first derivative functions that represent the slope function of the highlight and shadow component functions are given by expressions (15) and (16) respectively. ƒ_(h1)′(x)=φ_(h) e ^(−(x−x) ^(ρ) ^()/α) ^(h1)   (15) ƒ_(s1)′(x)=φ_(s) e ^(−(x−x) ^(ρ) ^()/α) ^(s1)   (16)

If the value of x_(ho) is greater than the value of x_(w), the highlight component function will map a greater range of input pixel values to a lesser range of output pixel values and is therefore considered a compressive function. Conversely, if the value of x_(ho) is less than the value of x_(w), the highlight component function will map a lesser range of pixel values to a greater range of pixel values and is therefore considered an expansive function. Similarly, if the value of x_(so) is less than the value of x_(b), the shadow component function will map a greater range of input pixel values to a lesser range of output pixels value and is therefore considered a compressive function. Conversely, if the value of x_(so) is greater than the value of x_(b), the shadow component function will map a lesser range of pixel values to a greater range of pixel values and is therefore considered an expansive function. Therefore, based on the values of the variables x_(ho) and x_(w), the highlight tone scale segment can be classified as either compressive, expansive, or neutral. When the value x_(ho) is equal to the value of x_(w), the highlight tone scale segment is classified as neutral since for this unique condition the highlight tone scale segment assumes the identity mapping function. Based on the values of the variables x_(so) and x_(b), the shadow tone scale segment can be classified as either compressive, expansive, or neutral. Similarly, when the value x_(so) is equal to the value of x_(b), the shadow tone scale segment is classified as neutral since for this unique condition the shadow tone scale segment assumes the identity mapping function.

For compressive highlight component functions, the numerical constant α_(h1) is positive. The corresponding slope function of the highlight component function given by expression (15) for positive values of φ_(h) yields positive slope function values for all x values greater than or equal to the reference gray point x_(ρ). The expression for the second derivative function, or the slope function of the slope function of the highlight component function is given by expression (17). ƒ_(h1)″(x)=−(φ_(h)/α_(h1))e ^(−(x−x) ^(ρ) ^()/α) ^(h1)   (17) FIG. 8 a shows an example graph of a highlight tone scale segment generated with a φ_(h) variable set to 1.0, a reference gray point set to 0.0 and a α_(h1) variable set to 1.0. As can be seen by inspection of the graph shown in FIG. 8 a and by expression (17), positive values of α_(h1) and φ_(h) result in a compressive highlight tone scale segment with a monotonically decreasing slope function that assumes values that are greater than or equal to zero. Curve 512 depicts such a highlight component function used to construct a highlight tone scale segment and curve 513 depicts its corresponding slope function. The reference gray point is indicated by point 511.

Similarly, for compressive shadow component functions, the numerical constant α_(s1) is negative. The corresponding slope function of the shadow component function given by expression (16) for the positive values of φ_(s) yields positive slope values for all x values less than or equal to the reference gray point x_(ρ). The expression for the second derivative function, or slope function of the slope function of the shadow component function is given by expression (18). ƒ_(s1)″(x)=−(φ_(s)/α_(s1))e ^(−(x−x) ^(ρ) ^()/α) ^(s1)   (18) FIG. 8 b shows an example graph of a shadow tone scale segment generated with a φ_(s) variable set to 1.0, a reference gray point set to 0.0 and a α_(s1) variable set to 1.0. As can be seen by inspection of the graph shown in FIG. 8 b and by expression (18), positive values of α_(s1) and φ_(s) result in a compressive shadow tone scale segment with a monotonically increasing slope function that assumes values that are greater than or equal to zero. Curve 515 depicts such a shadow component function used to construct a shadow tone scale segment and curve 516 depicts its corresponding slope function. The reference gray point is indicated by point 514.

An example tone scale function 203, shown in FIG. 8 c, was constructed from a highlight and shadow tone scale segment, each of which is constructed from a single component function as described above. The equal slope condition, as described above, is not a requirement of the tone scale functions generated by the present invention. In the example tone scale function shown in FIG. 8 c, the slopes of the highlight and shadow tone scale segments are not equal when evaluated at the reference gray point. Curve 517 represents the tone scale function 203 and curve 518 its corresponding slope function. The reference gray point is indicated by point 519. As can be seen in the example graph shown in FIG. 8 c, the tone scale function has a discontinuity in the slope function at the reference gray point. Tone scale functions having continuous slope function are, in general, desirable. However, experimentation has shown that the discontinuity in the slope function of a tone scale function when applied to digital images relating to natural photographed scenes is not often a problem. Other methods for generating tone scale functions, such as described in commonly-assigned U.S. Pat. No. 6,285,798 have imposed a continuity of slope constraint on the process of construction. The experimentation performed in support of the present invention has found that the continuity of slope constraint can be unnecessarily restrictive for some digital imaging applications. By not imposing the continuity of slope constraint, a greater diversity of useful tone scale functions can be produced. In particular, tone scale functions that are constructed in a manner responsive to the pixels of the source digital image when applied to the source digital image can achieve a greater level of overall contrast enhancement.

In another embodiment, the highlight tone scale segment is constructed from a compressive highlight component function. Recall that for compressive highlight component functions x_(ho) is greater than x_(w). For this embodiment, the expression given by (6) is combined with a linear function which relaxes the function's slope condition at the reference gray point. The expression for the highlight component function is given by (19) ƒ_(h1)(x)=(1−φ_(HC))α_(h1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(h1) )+φ_(HC) γ_(HC)(x−x _(ρ))+x _(ρ)  (19) where the variable γ_(HC) represents the average slope for the function over the interval from x_(ρ)to x_(ho) and is given by expression (20). γ_(HC)=(x _(w) −x _(ρ))/(x _(ho) −x _(ρ))  (20) The variable φ_(HC) determines the contribution of the linear function to the highlight component function. The variable φ_(HC) can be selected to affect a change in the shape of the highlight tone scale segments that uses expression (19) as a highlight component function. If φ_(HC) is set to 0.0, expression (19) reverts to expression (6). If φ_(HC) is set to 1.0, the expression (19) assumes a linear function given by expression (21). ƒ_(h1)(x)=γ_(HC)(x−x _(ρ))+x _(ρ)  (21) Thus the variable φ_(HC) is a control parameter that can be used to select the degree to which the highlight component function behaves as a pure exponential function. Similarly, the expression for the shadow component function is given by (22) ƒ_(s1)(x)=(1−φ_(SC))α_(s1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(s1) )+φ_(SC)γ_(SC)(x−x _(ρ))+x _(ρ)  (22) where the variable γ_(SC) represents the average slope for the function over the interval from x_(so) to x_(ρ)and is given by expression (23). γ_(SC)=(x _(b) −x _(ρ))/(x _(so) −x _(ρ))  (23) The variable φ_(SC) can be selected to change the shape of the shadow tone scale segments that use expression (22) as a shadow component function. If φ_(SC) is set to 0.0, expression (22) reverts to expression (7). If φ_(SC) is set to 1.0, expression (22) assumes a linear function given by expression (24). ƒ_(s1)(x)=γ_(SC)(x−x _(ρ))+x _(ρ)  (24) Thus the variable φ_(SC) is a control parameter that can be used to select the degree to which the shadow component function behaves as a pure exponential function.

Changing the φ_(HC) and φ_(SC) variables can have a significant impact on the appearance of the processed digital images. Setting the φ_(HC) and φ_(SC) variables toward 0.0 results in processed digital images that have a more traditional photographic high contrast appearance. Conversely, setting the φ_(HC) and φ_(SC) variables toward 1.0 results in processed digital images that have a more professional photographic low contrast appearance more appropriate for portraiture. FIG. 9 shows a graph depicting a family of curves that represent highlight tone scale segments generated with expression (19) using different values of x_(ho) and a family of curves that represent shadow tone scale segments generated with expression (22) using different values of x_(so). Point 521 represents the reference gray point x_(ρ). Curve 522 represents a highlight tone scale segment constructed from one highlight component function. Curve 523 represents a shadow tone scale segment constructed from one shadow component function. Line 524 represent the identity mapping one-to-one input pixel value-to-output pixel value line. The tone scale function 203 can be constructed from any of the highlight tone scale segments depicted in FIG. 9 or any of the shadow tone scale segments since the variables x_(ho) and x_(so) can be selected independently. It should also be noted that if the variables φ_(HC) and φ_(SC) are not set to 0.0, the resultant tone scale function will, in general, not have a continuous slope function at the reference gray point.

A highlight component function constructed with expressions (4), (6), or (13), for the case in which x_(ho) is less than x_(w), will result in a function that has a montonically increasing instantaneous slope. An example of such a function is depicted as curve 530 in FIG. 10 a. While the function indicated by curve 530 satisfies the mapping of input pixel value x_(ho) to output pixel value x_(w), a tone scale function based on such a function can produce some unnatural looking images. This is mainly due to the fact that the slope of the highlight component function depicted by curve 530 has a slope that is monotonically increasing, not monotonically decreasing, for the input pixel range near the reference gray point. However, a highlight component function can be constructed using the expressions (4), (6), or (13), reflected about the line indicated as line 531 given by (25) for input pixel values greater than or equal to the reference gray point (indicated by point 533). γ(x)=(x _(w) −x _(ρ))/(x _(ho) −x _(ρ))(x−x _(ρ))+x _(ρ)(25) The function produced by the reflection process, as indicated by curve 532 in FIG. 10 a, is a monontonically increasing function with a monotonically decreasing instantaneous slope. The functional form of the expansive highlight component function is calculated by the following steps. First the expression (4), (6), or (13) is solved using the constraint x_(ho)=x_(w) to determine the numerical constant α_(h1). In the second step, a first rotation transform is applied to a coordinate pair (x,ƒ(x)) resulting in a transformed coordinate pair (u,v) as given by (26) u=x cos(θ)+ƒ(x)sin(θ) v=−x sin(θ)−ƒ(x)cos(θ)  (26) where the angle θ is given by (27). θ=tan⁻¹((x _(w) −x _(ρ))/(x _(ho) −x _(ρ)))  (27) The first rotation transform is designed to transform the line described by expression (24) into the x-axis. In the third step the v coordinate is reflected about the new x-axis by taking the negative of the value v coordinate. In the fourth step, a reverse rotation transform is applied to the coordinate pair (u, −v) for the coordinate pair (u′, v′) as given by (28). u′=u cos(θ)+v sin(θ) v′=x sin(θ)−v cos(θ)  (28) In the fifth step, the coordinate pair (u′, v′) defines a highlight component function g(u) and is evaluated for the range of input pixel values.

Referring to FIG. 10 b, an expansive shadow component function can be constructed in similar manner as described above for the case in which x_(so) >x_(b). The shadow component function can be constructed using the function described by (5), (7), or (14), reflected about the line indicated as line 535 given by (29) for input pixel values less than or equal to the reference gray point (indicated by point 534) using the constraint x_(so)=x_(b) to determine the numerical constant α_(s1). y(x)=(x _(b) −x _(ρ))/(x _(so) −x _(ρ))(x−x _(ρ))+x ₉₂   (29) The curve indicated by 536 depicted in FIG. 10 b shows a function using (5), (7), or (14) for a positive numerical constant α_(s1). The corresponding expansive shadow component function produced via the reflection processing steps is indicated by curve 537.

An example graph of a tone scale function constructed from an expansive highlight tone scale segment and an expansive shadow tone scale segment constructed with the component functions described above is shown in FIG. 10 c. Since both the highlight and shadow tone scale segments are expansive, the tone scale function, indicated by curve 539, is classified as an expansive function over the range of input pixel values from x_(so) to x_(ho). The combined linear functions given by expressions (25) and (29) are shown as line 540 with the reference gray point as indicated by point 538. The tone scale function depicted in FIG. 8 c as curve 517 is classified as a compressive function over the range of input pixel values from x_(so) to x_(ho) since both the highlight and shadow tone scale segments used in its construction are compressive component functions. The reference gray point is indicated by point 538.

It is possible to construct a tone scale function from an expansive shadow component function and a compressive highlight component function or from a compressive shadow component function and an expansive highlight component function since the shape of the two tone scale segments are independently controllable. Such a tone scale function is referred to herein as an eclectic function since the two segments are of different shape classification. While is would be possible to have a tone scale applicator module specific to the eclectic function classification category, the present invention uses the compressive function applicator 242 to apply the tone scale function 203 for eclectic functions. Thus, the eclectic functions are reclassified as compressive functions. For tone scale functions constructed from a highlight and shadow tone scale segment, the present invention classifies the tone scale function 203 as compressive if either tone scale segment individually has been classified as compressive. Otherwise the tone scale function 203 is classified as expansive. It should be noted that other classification rule sets can be used. For example, the eclectic tone scale functions can be classified as expansive tone scale functions.

In a preferred embodiment, the expansive highlight component function ƒ_(h1)(x) is constructed using the expression (4) subject the constraints given by (30) and (31). ƒ_(h1)(x _(ho)′)=x _(w)  (30) ƒ_(h1)′(x _(w))=1.0  (31) where the variable x_(ho)′ is given by the expression (32) ƒ_(h1)(x _(ho)′)=(1.0−η_(H))(x _(w) −x _(ho))+x _(ho)  (32) and the variable η_(H) represents a control parameter that can be used to select the shape of the function. With these two constraints placed on the function ƒ_(h1)(x), the highlight component function achieves the goal of mapping the prescribed input pixel value x_(ho)′ to the prescribed output pixel value x_(w). The average slope of the function γ_(HE) over the interval from x_(ρ)to x_(ho)′ is given by the expression (33) γ_(HE)=(x _(w) −x _(ρ))/(x _(ho) ′−x _(ρ))  (33) which is greater than 1.0 since x_(w) is greater than x_(ho)′. In a similar manner as described above, the variables α_(h1) and β_(h1) used in the expression (4) are solved by iterative numerical approximation and stored in a LUT for later recall. The variable η_(H) is preferably set to 0.5. As a further refinement, the highlight component function is combined with a linear function using a control parameter φ_(HE). The final expression for the expansive highlight component function is given by (34). ƒ_(h1)(x)=(1−φ_(HE))α_(h1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(h1) )+φ_(HE)γ_(HE) +x _(ρ)  (34)

Similarly, the expansive shadow component function ƒ_(s1)(x) is constructed using the expression (5) subject the constraints given by (35) and (36). ƒ_(s1)(x _(so)′)=x _(b)  (35) ƒ_(s1)′(x _(b))=1.0  (36) where the variable x_(so)′ is given by the expression (37) ƒ_(s1)(x _(so)′)=(1.0−η_(s))(x _(b) −x _(so))+x _(so)  (37) and the variable η_(s) represents a control parameter that can be used to select the shape of the function. With these two constraints placed on the function ƒ_(s1)(x), the shadow component function achieves the goal of mapping the prescribed input pixel value x_(so)′ to the prescribed output pixel value x_(b). The average slope of the function γ_(SE) over the interval from x_(so)′ to x_(ρ) is given by the expression (38) γ_(SE)=(x _(ρ) −x _(b))/(x _(ρ) −x _(so)′)  (38) which is greater than 1.0 since x_(b) is less than x_(so)′. In a similar manner as described above, the variables α_(s1) and β_(s1) used in the expression (5) are solved by iterative numerical approximation and stored in a look-up-table (LUT) for later recall. The variable η_(s) is preferably set to 0.5. As a further refinement, the shadow component function is combined with a linear function using a control variable φ_(SE). The final expression for the expansive shadow component function is given by (39). ƒ_(s1)(x)=(1−φ_(SE))α_(s1)(1−e ^(−(x−x) ^(ρ) ^()/α) ^(s1) )+φ_(SE)γ_(SE) +x _(ρ)  (39) FIG. 11 depicts a family of highlight and shadow tone scale segments each generated from a single expansive component function using expressions (34) and (39) respectively. Point 541 represents the reference gray point x_(ρ). Line 542 represents the identity mapping one-to-one input pixel value-to-output pixel value line. Curve 543 represents an example a highlight tone scale segment using expression (34). Curve 544 represents an example shadow tone scale segment using expression (39).

An important feature of the tone scale segments constructed with the two-segment method is the gradual transition in function shape corresponding to a transition from compressive to expansive type functions. FIG. 12 a depicts a family of highlight tone scale segments constructed from a single highlight component function using expression (19) when the component function is compressive and expression (34) when the component function is expansive. Point 549 indicates the reference gray point. Curve 550 indicates a highly compressive highlight component function while curve 551 indicates a mildly highlight component function. The higher the degree of compression, the greater the curvature of the function. When the highlight component function is neither compressive nor expansive, the function assumes the identity mapping one-to-one input-to-output line indicated by curve 552. Curve 553 indicates a mildly expansive highlight component function. Curve 554 indicates a highly expansive highlight component function. The higher the degree of expansion, the greater the curvature of the function. Thus for mildly compressive and mildly expansive highlight component functions, the shape of the function is closer to a straight line. For the compressive highlight component functions used to construct the highlight component segments as shown in FIG. 12 a a value of 0.0 was used for the variable φ_(HC). For the expansive highlight component functions used to construct the highlight component segments shown in FIG. 12 a a value of 0.0 was used for the variable φ_(HE). It should be noted that the value of the φ_(HC) variable used in expression (19) can be selected independent of the value of the φ_(HE) variable used in expression (34).

The shape of the shadow tone scale segments also have a graceful transition between compressive and expansive function types. FIG. 12 a also depicts a family of shadow tone scale segments constructed from a single shadow component function using expression (22) when the component function is compressive and expression (39) when the component function is expansive. Curve 555 indicates a highly compressive shadow component function while curve 556 indicates a mildly shadow component function. The higher the degree of compression, the greater the curvature of the function. When the shadow component function is neither compressive nor expansive, the function assumes the identity mapping one-to-one input-to-output line indicated by line 557. Curve 558 indicates a mildly expansive shadow component function. Curve 559 indicates a highly expansive shadow component function. The higher the degree of expansion, the greater the curvature of the function. Thus for mildly compressive and mildly expansive shadow component functions, the shape of the function is closer to a straight line. For the compressive shadow component functions used to construct the shadow component segments as shown in FIG. 12 a a value of 0.0 was used for the variable φ_(SC). For the expansive shadow component functions used to construct the shadow component segments shown in FIG. 12 a a value of 0.0 was used for the variable φ_(SE). It should be noted that the value of the φ_(SC) variable used in expression (22) can be selected independent of the value of the φ_(SE) variable used in expression (39).

FIG. 12 b depicts a similar family of highlight and shadow tone scale segments constructed using expressions (19), (34), (22) and (39) with the values of the variables φ_(HC), φ_(HE), φ_(SC), and φ_(SE) all set to a value of 0.5. As can be seen from the curves depicted in FIG. 12 b, the tone scale segments make a gradual transition in function shape for a corresponding transition from compressive to expansive type functions.

In another construction method for a compressive highlight component function, the variable φ_(h) is made a function of the degree of compression, i.e. the ratio of (x_(w)−x_(ρ)) to (x_(ho)−x_(ρ)). The expression for the highlight component function ƒ_(h1)(x) is given by (13) where the slope variable φ_(h) in expression (13) is given by (40) φ_(h)=1.0−η_(h)(1.0−(x _(w) /x _(ho)))  (40) and the variable η_(h) controls the shape of the highlight component function. The variable η_(h) can be selected. When the variable η_(h) is set to 1.0, the highlight component function assumes the equation of a line given as expression (21). When the variable η_(h) is set to 0.0, the highlight component function assumes the equation of the exponential function given as expression (13). Similarly, for a compressive shadow component function, the variable φ_(s) is made a function of the degree of compression, i.e. the ratio of (x_(ρ)−x_(b)) to (x_(ρ)−x_(so)). The expression for the shadow component function ƒ_(s1)(x) is given by (14) where the slope variable φ_(s) in expression (14) is given by (41) φ_(s)=1.0−η_(s)(1.0−(x _(b) /x _(so)))  (41) and the variable η_(s) controls the shape of the shadow component function. When the variable η_(s) is set to 1.0, the shadow component function assumes the equation of a line given as expression (24). When the variable η_(s) is set to 0.0, the shadow component function assumes the equation of the exponential function given as expression (14).

Referring to FIG. 4, the pixels of the source digital image, i.e. the input digital image to the tone scale module 330, can be used to determine the variables x_(ho) and x_(so) and thus determine the shape of the tone scale function 203. The analysis image generator 250 receives the source digital image and produces an analysis digital image 201 by applying a low-pass spatial filter and performing a sampling operation. The result is a lower spatial resolution version of the source digital image that has fewer pixels representing the same image content. Typical spatial resolutions for the analysis digital image 201 is approximately 64 by 96 pixels. The analysis digital image is also converted to be in a luminance-chrominance representation using expression (2).

The tone scale function generator 230 calculates the tone scale function 203 by analyzing the pixels of the analysis digital image 201. A pixel histogram function, i.e. a frequency of occurrence function, is calculated from the pixels of the luminance digital image channel of the analysis digital image 201. A cumulative histogram function is calculated from the pixel histogram function by integrating the values of the pixel histogram as a function of pixel value. FIG. 14 shows a graph of a example histogram function indicated by curve 601 and its corresponding cumulative histogram function indicated by curve 602. The cumulative histogram function is scaled between 0.0 and 1.0 and relates to the percentage area of the digital image with 1.0 corresponding to 100 percent of image area. The ordinate value of the cumulative histogram function relates to a given percentage image area Z. The corresponding abscissa value relates to the pixel value P for which the percentage of pixels in the image that have values less than P is given by Z. The 99.0% cumulative histogram function value is used to determine the value of the highlight point, variable x_(ho). The 1.0% cumulative histogram function value is used to determine the value of the shadow point, variable x_(so). The values for the variables x_(ho) and x_(so) are indicated as points 603 and 604 respectively on the graph shown in FIG. 14.

Referring to FIG. 3 and FIG. 4, the tone scale function generator 230 can accept user input selections 231 in the generation of the tone scale function 203. For example a user of the system shown in FIG. 1 can view possible selections and/or control parameters on the monitor device 50 and indicate selections using the input control device 60 such as a keyboard or mouse pointing device. When used in this manual user mode, a highlight control parameter and a shadow control parameter are used to change the shape of the component functions that are used to generate the highlight tone scale segment and shadow tone scale segment respectively.

The present invention is preferably practiced in an image processing system including a source of digital images, such as a scanner, a computer programmed to process digital images, and an output device such as a thermal or ink-jet printer. The method of the present invention may be sold as a computer program product including a computer readable storage medium bearing computer code for implementing the steps of the invention.

Computer readable storage medium may include, for example; magnetic storage media such as a magnetic disc (e.g. a floppy disc) or magnetic tape; optical storage media such as optical disc or optical tape; bar code; solid state electronic storage devices such as random access memory (RAM) or read only memory (ROM); or any other physical device or medium employed to store a computer program.

The invention has been described in detail with particular reference to certain preferred embodiments thereof, but it will be understood that variations and modifications can be effected within the spirit and scope of the invention.

PARTS LIST  10 image capture device  10a image capture device  10b image capture device  10c image capture device  20 digital image processor  30a image output device  30b image output device  40 general control processor  50 monitor device  60 input control device  70 computer memory device 101 original digital image 102 source digital image 103 rendered digital image 104 enhanced digital image 107 luminance digital image 109 chrominance digital image 113 enhanced luminance digital image 201 analysis digital image 203 tone scale function 207 noise table 210 LCC conversion module 220 RGB conversion module 230 tone scale function generator 231 user input selections 240 tone scale function applicator 241 tone scale function classifier 242 compressive function applicator 244 expansive function applicator 250 analysis image generator 310 RLSE conversion module 320 scene balance module 330 tone scale module 340 rendering module 401 input digital image 402 texture digital image 403 pedestal digital image 407 tone scale adjusted digital image 409 output digital image 410 pedestal generation module 412 noise residual digital image 413 noise reduced digital image 420 difference module 430 tone scale modifier 432 chrominance modifier 433 direct function applicator 440 addition module 450 noise reduction module 500 point 501 curve 502 curve 503 line 511 point 512 curve 513 curve 514 point 515 curve 516 curve 517 curve 518 curve 519 point 521 point 522 curve 523 curve 524 line 530 curve 531 line 532 curve 533 point 534 point 535 line 536 curve 537 curve 538 point 539 curve 540 line 541 point 542 line 543 curve 544 curve 549 point 550 curve 551 curve 552 line 553 curve 554 curve 555 curve 556 curve 557 line 558 curve 559 curve 590 curve 591 point 592 point 593 point 595 point 596 point 597 point 598 curve 601 curve 602 curve 603 point 604 point 

1. A method of enhancing the tonal and spatial characteristics of a digital image, comprising the steps of: a) receiving a source digital image including a plurality of pixels; b) producing a tone scale function that can be used to enhance the tonal characteristics of the source digital image; c) classifying the tone scale function into one of two or more categories, wherein the classification categories include expansive and compressive; and d) using the tone scale function, the source digital image, and a first spatial filter to produce an enhanced digital image when the tone scale function has been classified as compressive, and using the tone scale function, the source digital image, and a second spatial filter to produce an enhanced digital image when the tone scale function has been classified as expansive.
 2. The method of claim 1 using a sigmoid shaped rendering function independent of the source digital image and the enhanced digital image to produce a rendered digital image.
 3. The method of claim 1 further including the step of using the pixels of the source digital image to produce the tone scale function.
 4. The method of claim 1 further including the step of using the pixels of the source digital image to produce a histogram and using the histogram to produce the tone scale function.
 5. The method of claim 4 wherein the tone scale function maps a fixed percentile of the histogram to a predetermined output value relating to a first density and a different fixed percentile of the histogram to a predetermined output value relating to a second density.
 6. The method of claim 1 wherein the source digital image is in a luminance-chrominance representation.
 7. The method of claim 6 wherein the source digital image is in a luminance-chrominance representation composed of a luminance digital image channel and at least two chrominance digital image channels further including the steps of: i) using the first spatial filter to produce a first and second signal from the luminance digital image channel such that when the first and second signals are added together the resultant signal is equal to the luminance digital image channel; ii) using the tone scale function and the first signal to produce a modified first signal; and iii) combining the modified first signal with the second signal to produce a modified luminance digital image channel wherein the modified luminance digital image channel and the at least two chrominance digital image channels form the enhanced digital image.
 8. The method of claim 1 wherein the source digital image includes pixels having at least three different colors.
 9. The method of claim 8 wherein the source digital image includes a plurality of digital image channels each digital image channel relating to a different color and further including the steps of: i) using the first spatial filter to produce a first and second signal for each digital image channel such that when the first and second signals are added together the resultant signal is equal to the digital image channel; ii) using the tone scale function and the first signal from each digital image channel to produce a modified first signal; and combining the modified first signal with the corresponding second signal from each digital image channel to produce a modified digital image channel for each color wherein the modified digital image channels form the enhanced digital image.
 10. The method of claim 1 wherein the pixels of the source digital image have a logarithmic relationship to original scene intensities.
 11. The method of claim 1 wherein the tone scale function is manually controlled with at least one control parameter.
 12. The method of claim 1 further including the steps of: producing the tone scale function having a highlight tone scale segment and a shadow tone scale segment defined relative to a reference point on the tone scale function, wherein: i) the highlight tone scale segment is defined by a different mathematical function than the shadow tone scale segment; ii) the highlight tone scale segment is defined for points that are equal to or greater than the reference point; and iii) the shadow tone scale segment is defined for points that are equal to or less than the reference point.
 13. The method of claim 12 further including the steps of: classifying the highlight tone scale segment into one of two or more categories based on the effect the highlight tone scale segment will have on the corresponding numerical range of pixel values of a processed digital image, wherein the classification categories include expansive and compressive; classifying the shadow tone scale segment into one of two or more categories based on the effect the shadow tone scale segment will have on the corresponding numerical range of pixel values of a processed digital image, wherein the classification categories include expansive and compressive; classifying the tone scale function into one of two or more categories based on the effect the shadow tone scale segment will have on the numerical range of pixel values of a processed digital image, wherein the classification categories include expansive and compressive; classifying the tone scale function as compressive when either the highlight or shadow tone scale segment has been classified as compressive and classifying the tone scale function as expansive when both the highlight and shadow tone scale segments have been classified as expansive.
 14. The method of claim 12 wherein the slopes of the highlight and shadow tone scale segments are each equal at the reference point.
 15. The method of claim 12 wherein the slopes of the highlight and shadow tone scale segments are unequal at the reference point.
 16. The method of claim 12 wherein the tone scale function has an inflection point at the reference point.
 17. The method of claim 12 wherein the reference point is calculated using the pixels of the source digital image.
 18. The method of claim 12 further including the step of using the pixels of the source digital image to produce a histogram and using the histogram to produce the highlight tone scale segment.
 19. The method of claim 18 wherein the highlight tone scale segment maps a fixed percentile of the histogram to a predetermined output value relating to a predetermined density.
 20. The method of claim 12 further including the step of using the pixels of the source digital image to produce a histogram and using the histogram to produce the shadow tone scale segment.
 21. The method of claim 20 wherein the shadow tone scale segment maps a fixed percentile of the histogram to a predetermined output value.
 22. A method of enhancing the tonal and spatial characteristics of a digital image, comprising the steps of: a) receiving a source digital image in an RGB representation having a red, green and blue digital image channel each digital image channel including a plurality of pixels; b) producing a tone scale function that can be used to enhance the tonal characteristics of the source digital image; c) classifying the tone scale function into one of two or more categories, wherein the classification categories include expansive and compressive; d) transforming the source digital image into a luminance-chrominance representation; and e) using a first spatial filter, the tone scale function, and the luminance-chrominance representation of the source digital image to produce an enhanced digital image when the tone scale function has been classified as compressive; and using a second spatial filter, the tone scale function, and the source digital image to produce the enhanced digital image when the tone scale function has classified as expansive.
 23. A method of enhancing the tonal and spatial characteristics of a digital image, comprising the steps of: a) receiving a source digital image including digital image channels each having a plurality of pixels; b) producing a tone scale function that can be used to enhance the tonal characteristics of the source digital image; c) classifying the tone scale function into one of two or more categories, wherein the classification categories include expansive and compressive; and d) using the tone scale function, the source digital image, and a first spatial filter to produce an enhanced digital image when the tone scale function has been classified as compressive, and using the tone scale function, the source digital image, and a second noise reduction spatial filter to produce an enhanced digital image when the tone scale function has been classified as expansive.
 24. The method of claim 23 further including the steps of: i) using the first spatial filter to produce a first and second signal such that when the first and second signals are added together the resultant signal is equal to one of the digital image channels; ii) using the tone scale function and the first signal to produce a modified first signal; and iii) combining the modified first signal with the second signal to produce a modified digital image channel.
 25. The method of claim 23 wherein the source digital image is composed of a plurality of digital image channels each digital image channel relating to each different color and further including the steps of: using the second spatial filter to produce a first and second signal for each digital image channel such that when the first and second signals are added together the resultant signal is equal to the digital image channel; using the tone scale function and the first signal from each digital image channel to produce a modified first signal; combining the modified first signal with the corresponding second signal from each digital image channel to produce a modified digital image channel for each color, wherein the modified digital image channels form the enhanced digital image.
 26. The method of claim 25 wherein the second spatial filter varies the degree of spatial filtering for each digital image channel in accordance with the expected magnitude of noise in the corresponding digital image channel.
 27. The method of claim 26 wherein the second spatial filter varies the first and second signals derived from each digital image channel in accordance with the expected magnitude of noise in the corresponding digital image channel.
 28. The method of claim 27 wherein the second spatial filter includes the steps of calculating a weighted average of pixel values within a local neighborhood of pixels about a pixel of interest wherein the weight assigned to each particular pixel within the local neighborhood is based on the expected magnitude of noise for the pixel of interest; and the absolute value of the difference between the value of the particular pixel and the pixel of interest.
 29. The method of claim 1 wherein the step c) further includes classifying the tone scale function into one of three or more categories, wherein the classification categories include expansive, compressive, and non-noisy-expansive and step d) further includes using the tone scale function without a spatial filter to produce an enhanced digital image when the tone scale function has been classified as non-noisy-expansive.
 30. A method of enhancing the tonal and spatial characteristics of a digital image, comprising the steps of: a) receiving a source digital image including a plurality of pixels; b) producing a tone scale function that can be used to enhance the tonal characteristics of the source digital image; c) classifying the tone scale function into one of two or more categories resulting in an assigned classification category; and d) using assigned classification category to select one of a plurality of spatial filter; and e) using the selected spatial filter, the tone scale function, and the source digital image to produce an enhanced digital image.
 31. A method of enhancing the tonal and spatial characteristics of a digital image, comprising the steps of: a) receiving a source digital image including a plurality of pixels; b) producing a tone scale function that can be used to enhance the tonal characteristics of the source digital image; c) analyzing the tone scale function and selecting a spatial filter from a plurality of spatial filters in accordance with the analyzed tone scale function; and d) using the selected spatial filter, the tone scale function, and the source digital image to produce an enhanced digital image.
 32. A computer storage product having at least one computer storage medium having instructions stored therein causing one or more computers to perform the method of claim
 1. 33. A computer storage product having at least one computer storage medium having instructions stored therein causing one or more computers to perform the method of claim
 22. 34. A computer storage product having at least one computer storage medium having instructions stored therein causing one or more computers to perform the method of claim
 23. 35. A computer storage product having at least one computer storage medium having instructions stored therein causing one or more computers to perform the method of claim
 30. 36. A computer storage product having at least one computer storage medium having instructions stored therein causing one or more computers to perform the method of claim
 31. 